Department of Production Systems Engineering and Sciences, Komatsu University, Shichomachi Nu1-3, Komatsu, Ishikawa 923-8511, Japan.
Department of Creative Community, Komatsu College, Shichomachi Nu1-3, Komatsu, Ishikawa 923-8511, Japan.
Sensors (Basel). 2019 Jan 4;19(1):165. doi: 10.3390/s19010165.
Many logistics companies adopt a manual order picking system. In related research, the effect of emotion and engagement on work efficiency and human errors was verified. However, related research has not established a method to predict emotion and engagement during work with high exercise intensity. Therefore, important variables for predicting the emotion and engagement during work with high exercise intensity are not clear. In this study, to clarify the mechanism of occurrence of emotion and engagement during order picking. Then, we clarify the explanatory variables which are important in predicting the emotion and engagement during work with high exercise intensity. We conducted verification experiments. We compared the accuracy of estimating human emotion and engagement by inputting pulse wave, eye movements, and movements to deep neural networks. We showed that emotion and engagement during order picking can be predicted from the behavior of the worker with an accuracy of error rate of 0.12 or less. Moreover, we have constructed a psychological model based on the questionnaire results and show that the work efficiency of workers is improved by giving them clear targets.
许多物流公司采用手动订单拣选系统。在相关研究中,已经验证了情绪和投入对工作效率和人为错误的影响。然而,相关研究尚未建立一种方法来预测高强度运动工作中的情绪和投入。因此,高强度运动工作中预测情绪和投入的重要变量尚不清楚。在这项研究中,我们旨在阐明订单拣选过程中情绪和投入发生的机制。然后,我们确定在预测高强度运动工作中的情绪和投入方面重要的解释变量。我们进行了验证实验。我们比较了通过输入脉搏波、眼动和运动来输入到深度神经网络中,以估计人类情绪和投入的准确性。结果表明,通过工人的行为可以以错误率 0.12 或更低的准确度预测订单拣选过程中的情绪和投入。此外,我们还根据问卷调查结果构建了一个心理模型,表明通过为工人设定明确的目标可以提高他们的工作效率。